CN117520522B - Intelligent dialogue method and device based on combination of RPA and AI and electronic equipment - Google Patents
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Abstract
The invention belongs to the technical field of man-machine intelligent dialogue, and particularly relates to an intelligent dialogue method and device based on combination of RPA and AI and electronic equipment. The invention builds the knowledge graph and the inference rule in the corresponding field based on the extracted keywords, determines the entity relations in the knowledge graph, and generates the corresponding inference rule according to the entity relations, wherein the inference rule can be used for guiding the robot how to generate the response sentence according to the knowledge graph, thereby providing accurate response information for the user, collecting the feedback information of the user after the conversation is finished, further improving and optimizing the performance and effect of the intelligent conversation, improving the interaction efficiency and accuracy of the robot and the user, and providing better service and experience for the user.
Description
Technical Field
The invention belongs to the technical field of man-machine intelligent dialogue, and particularly relates to an intelligent dialogue method and device based on combination of RPA and AI and electronic equipment.
Background
With the continuous development of technology, artificial Intelligence (AI) and Robot Process Automation (RPA) have become the focus of attention of enterprises and individuals today, and the combination of these two technologies provides a more efficient and intelligent solution for the enterprises to cope with increasingly complex business demands, and in this context, an intelligent dialogue system based on the combination of RPA and AI has been developed, which aims to realize natural and smooth communication between machines and users in a manner of simulating human dialogue, thereby improving user experience and enterprise operation efficiency.
At present, some intelligent dialogue systems based on combination of RPA and AI exist on the market, but most of the intelligent dialogue systems still have certain limitations, for example, the systems may show lower accuracy when processing complex questions, only answer the questions according to fixed templates, corresponding reasoning functions are lacking, user intention may not be accurately understood when facing diversified user expression modes, and simultaneously, given responses cannot meet the requirements of users.
Disclosure of Invention
The invention aims to provide an intelligent dialogue method, an intelligent dialogue device and electronic equipment based on combination of RPA and AI, which can improve the interaction efficiency and accuracy of a robot and a user and provide better service and experience for the user.
The technical scheme adopted by the invention is as follows:
an intelligent dialogue method based on combination of RPA and AI, comprising:
collecting dialogue information in a real scene, wherein the dialogue information comprises inquiry information and response information;
preprocessing the collected dialogue information, and inputting all sentences in the inquiry information and the response information into a feature extraction model together to obtain keywords in the dialogue information;
constructing a knowledge graph by utilizing RPA and AI technologies according to the preprocessed dialogue information, determining entity relations in the knowledge graph according to key words, generating corresponding reasoning rules according to the entity relations, and constructing a response database and an extension database of the robot according to the knowledge graph and the reasoning rules;
acquiring inquiry sentences of a user, outputting response sentences according to the knowledge graph and the reasoning rules, realizing intelligent dialogue between the robot and the user, and collecting user feedback information after the dialogue is finished;
summarizing the user feedback information, inputting the user feedback information into an evaluation model to obtain dialogue states of each intelligent dialogue, wherein the dialogue states comprise an accurate state and an error state, summarizing query sentences in the error state into questionnaires, and executing questionnaires according to the questionnaires to obtain answer sentences corresponding to the query sentences.
In a preferred embodiment, the step of preprocessing the collected dialogue information includes:
acquiring dialogue information, performing data cleaning, and removing special characters, HTML labels and URLs to obtain cleaned sentences;
obtaining a filtered vocabulary, and comparing the filtered vocabulary with the cleaned sentences, wherein the filtered vocabulary is a sensitive vocabulary;
if the filtered words exist in the cleaned sentences, marking the cleaned sentences as sensitive sentences, and screening out the cleaned sentences;
and if the filtered vocabulary does not exist in the cleaned sentences, calibrating the cleaned sentences as normal sentences, and summarizing the normal sentences as a reference data set.
In a preferred scheme, after the reference data set is determined, all inquiry sentences in the reference data set are acquired, and the inquiry sentences are marked as reference sentences;
acquiring all answer sentences under the same reference sentence, calibrating the answer sentences as sentences to be evaluated, inputting all the sentences to be evaluated into an evaluation model to obtain the occupation ratio of each sentence to be evaluated, and calibrating the occupation ratio as parameters to be checked;
and arranging the parameters to be checked according to the sequence from big to small, and inputting the parameters to be checked into a check model to obtain a standard answer sentence corresponding to the reference sentence.
In a preferred embodiment, the step of inputting all the sentences to be evaluated into an evaluation model to obtain the occupation ratio of each sentence to be evaluated and calibrating the occupation ratio as the parameter to be verified includes:
acquiring all sentences to be evaluated under the same reference sentence;
invoking an evaluation function from the evaluation model;
inputting the sentences to be evaluated into an evaluation function to obtain text similarity among the sentences to be evaluated;
acquiring an evaluation threshold value, comparing the evaluation threshold value with the text similarity, and classifying sentences to be evaluated, which are larger than the text similarity, into a plurality of groups of sentences with the same type;
and measuring and calculating the occupation ratio of each group of sentences of the same type, and calibrating the occupation ratio as parameters to be checked.
In a preferred embodiment, the step of arranging the parameters to be verified in order from large to small, and inputting the parameters to be verified into a verification model to obtain a standard answer sentence corresponding to a reference sentence includes:
acquiring the parameter to be checked;
calling a checking function from the checking model, inputting the first two parameters to be checked into the checking function one by one, and calibrating the output result as the difference to be checked;
calling a verification threshold value from the verification model, and comparing the verification threshold value with the difference to be verified;
if the to-be-checked difference is larger than a checking threshold value, calibrating the to-be-evaluated sentence corresponding to the first to-be-checked parameter as a reference answer sentence;
and if the to-be-checked difference is smaller than or equal to the checking threshold value, continuously collecting dialogue information in the corresponding real scene.
In a preferred embodiment, the step of inputting all sentences in the query information and the response information into the feature extraction model together to obtain keywords in the dialogue information includes:
acquiring all sentences in the inquiry information and the response information under the same dialogue information, and performing word segmentation processing to obtain a plurality of independent words;
counting the occurrence times of each independent word to obtain word frequency of the word, and counting the total occurrence times of all the independent words to obtain sample frequency;
invoking a measuring and calculating function from the feature extraction model;
the vocabulary word frequency and the sample frequency are input into an measuring and calculating function together, and the output result is calibrated as vocabulary weight;
and acquiring a feature extraction threshold value, comparing the feature extraction threshold value with the vocabulary weight, and calibrating all independent vocabularies larger than the feature extraction threshold value as keywords.
In a preferred embodiment, the step of generating the corresponding inference rule according to the entity relationship includes:
extracting a named entity from dialogue information of the real scene, and taking the named entity as a knowledge node in a knowledge graph;
acquiring semantic relevance among the keywords and corresponding entity relations;
and determining the subordinate relations among the keywords according to the entity relations, and generating corresponding reasoning rules.
In a preferred embodiment, the step of summarizing the user feedback information and inputting the summarized user feedback information into an evaluation model to obtain a session state of each intelligent session includes:
acquiring the user feedback information, wherein the user feedback information comprises correct feedback and error feedback;
the duty ratio of the error feedback in the feedback information of all users is calculated and calibrated as the parameter to be evaluated;
invoking an evaluation threshold value from the evaluation model, and comparing the evaluation threshold value with parameters to be evaluated;
if the parameter to be evaluated is greater than or equal to the evaluation threshold, indicating that the answer sentence output by the robot does not meet the requirement of the user, and summarizing the corresponding inquiry sentence into a questionnaire text;
if the parameter to be evaluated is smaller than the evaluation threshold, the corresponding dialogue state is directly calibrated into an accurate state.
The invention also provides an intelligent dialogue device based on the combination of RPA and AI, which is applied to the intelligent dialogue method based on the combination of RPA and AI, and comprises the following steps:
the data acquisition module is used for acquiring dialogue information in a real scene, wherein the dialogue information comprises inquiry information and response information;
the feature extraction module is used for preprocessing the collected dialogue information, and inputting all sentences in the inquiry information and the response information into a feature extraction model together to obtain keywords in the dialogue information;
the knowledge construction module is used for constructing a knowledge graph by utilizing RPA and AI technologies according to the preprocessed dialogue information, determining entity relations in the knowledge graph according to the keywords, generating corresponding reasoning rules according to the entity relations, and constructing a response database and an extension database of the robot according to the knowledge graph and the reasoning rules;
the intelligent dialogue module is used for acquiring inquiry sentences of a user, outputting response sentences according to the knowledge graph and the reasoning rules, realizing intelligent dialogue between the robot and the user, and collecting user feedback information after the dialogue is finished;
and the feedback module is used for summarizing the user feedback information, inputting the user feedback information into an evaluation model to obtain dialogue states of the intelligent dialogues, wherein the dialogue states comprise an accurate state and an error state, summarizing inquiry sentences in the error state into questionnaires, and executing questionnaires according to the questionnaires to obtain answer sentences corresponding to the inquiry sentences.
And an electronic device comprising the intelligent dialogue device based on the combination of RPA and AI.
The invention has the technical effects that:
the invention builds the knowledge graph and the inference rule in the corresponding field based on the extracted keywords, determines the entity relations in the knowledge graph, and generates the corresponding inference rule according to the entity relations, wherein the inference rule can be used for guiding the robot how to generate the response sentence according to the knowledge graph, thereby providing accurate response information for the user, collecting the feedback information of the user after the conversation is finished, further improving and optimizing the performance and effect of the intelligent conversation, improving the interaction efficiency and accuracy of the robot and the user, and providing better service and experience for the user.
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FIG. 1 is a flow chart of a method provided in embodiment 1 of the present invention;
FIG. 2 is a flow chart of the method provided in embodiment 2 of the present invention;
FIG. 3 is a flow chart of the method provided in embodiment 3 of the present invention;
FIG. 4 is a flow chart of the method provided in embodiment 4 of the present invention;
FIG. 5 is a block diagram of an apparatus according to embodiment 5 of the present invention;
fig. 6 is a construction diagram of an apparatus according to embodiment 6 of the present invention.
Detailed Description
In order that the above-recited objects, features and advantages of the present invention will become more readily apparent, a more particular description of the invention will be rendered by reference to specific embodiments thereof which are illustrated in the appended drawings.
In the following description, numerous specific details are set forth in order to provide a thorough understanding of the present invention, but the present invention may be practiced in other ways other than those described herein, and persons skilled in the art will readily appreciate that the present invention is not limited to the specific embodiments disclosed below.
Further, reference herein to "one embodiment" or "an embodiment" means that a particular feature, structure, or characteristic can be included in at least one implementation of the invention. The appearances of the phrase "in one preferred embodiment" in various places in the specification are not necessarily all referring to the same embodiment, nor are separate or alternative embodiments mutually exclusive of other embodiments.
Example 1:
referring to fig. 1, a first embodiment of the present invention provides an intelligent dialogue method based on combination of RPA and AI, which includes:
s1, collecting dialogue information in a real scene, wherein the dialogue information comprises inquiry information and response information;
s2, preprocessing the collected dialogue information, and inputting all sentences in the query information and the response information into a feature extraction model together to obtain keywords in the dialogue information;
s3, constructing a knowledge graph by utilizing RPA and AI technologies according to the preprocessed dialogue information, determining entity relations in the knowledge graph according to the keywords, generating corresponding reasoning rules according to the entity relations, and constructing a response database and an extension database of the robot according to the knowledge graph and the reasoning rules;
s4, acquiring an inquiry sentence of a user, outputting an answer sentence according to a knowledge graph and an inference rule, realizing intelligent dialogue between the robot and the user, and collecting user feedback information after the dialogue is finished;
and S5, summarizing user feedback information, inputting the user feedback information into an evaluation model to obtain dialogue states of each intelligent dialogue, wherein the dialogue states comprise an accurate state and an error state, summarizing query sentences in the error state into questionnaires, and executing questionnaires according to the questionnaires to obtain answer sentences corresponding to the query sentences.
As described in the above steps S1-S5, with the continuous development of technology, artificial Intelligence (AI) and Robot Process Automation (RPA) technologies are widely used in various fields, where the AI technology can help a machine understand and process natural language, so as to implement intelligent dialogue with human beings, and the RPA technology can enable the machine to automatically perform a series of repetitive tasks, thereby improving working efficiency. However, the intelligent dialogue system on the market at present often has only a single function and cannot meet the diversified demands of users, so that an intelligent dialogue method based on the combination of RPA and AI is developed, which has important practical significance and application value, in this embodiment, dialogue information in a real scene is collected first, and the dialogue information may come from various sources, such as client service chat records, social media interactions and the like, and the dialogue information generally includes query information and response information, wherein the query information is a question or a request made by a user, and the response information is a corresponding response or a solution, and then the collected dialogue information is preprocessed, including operations such as data cleaning and filtering, so as to better process and understand the data, after preprocessing, all sentences in the inquiry information and the response information are input into a feature extraction model together to identify and extract keywords in the conversation information, then a knowledge graph is constructed by utilizing RPA and AI technology, the knowledge graph is a data structure for representing knowledge and information, the knowledge graph can be used for helping a robot to better understand and answer the problems of a user, entity relations in the knowledge graph can be determined according to the preprocessed conversation information and keywords, and corresponding reasoning rules can be generated according to the entity relations, the reasoning rules can be used for guiding the robot to generate response sentences according to the knowledge graph, meanwhile, a response database and an extension database of the robot are constructed according to the knowledge graph and the reasoning rules so as to quickly search and acquire related answers when required, popularization or test is carried out, the inquiry sentences of the user need to be acquired firstly in the process, the robot can output corresponding answer sentences according to preset reasoning rules and knowledge patterns, in this way, intelligent dialogue between the robot and a user can be realized, so that accurate and timely answers and solutions are provided for the user, after the dialogue is finished, user feedback information is collected, so that the performance and effect of the intelligent dialogue are further improved and optimized, after the user feedback information is collected, summarization processing is performed, the summarized user feedback information is input into an evaluation model, the evaluation model can evaluate and score the performance and effect of the intelligent dialogue, so that people can know which dialogue states are accurate and which are wrong, meanwhile, the inquiry sentences in the wrong states are summarized into questionnaire texts, and answer sentences corresponding to the inquiry sentences are acquired in a questionnaire investigation mode, so that the interaction efficiency and accuracy of the robot and the user are improved, and better service and experience are provided for the user.
Example 2:
referring to fig. 2, a second embodiment of the present invention is shown, which is based on the previous embodiment.
The step of preprocessing the collected dialogue information comprises the following steps:
s201, acquiring dialogue information, performing data cleaning, and removing special characters, HTML labels and URLs to obtain cleaned sentences;
s202, obtaining a filtered vocabulary, and comparing the filtered vocabulary with the cleaned sentences, wherein the filtered vocabulary is a sensitive vocabulary;
if the filtered vocabulary exists in the cleaned sentences, the filtered vocabulary is marked as sensitive sentences and screened out from the cleaned sentences;
if the filtered vocabulary does not exist in the cleaned sentences, the cleaned sentences are marked as normal sentences and summarized as a reference data set.
As described in the foregoing steps S201-S202, when preprocessing dialogue information, firstly dialogue information needs to be collected and data is cleaned, the purpose of data cleaning is to remove special characters, HTML tags, URLs and other irrelevant information in the dialogue, ensure that the obtained dialogue sentences are clean and accurate, the cleaned sentences can be used as the basis of subsequent processing, secondly, a filtered vocabulary list needs to be determined, the filtered vocabulary is usually sensitive vocabulary or limited vocabulary and is used for identifying sentences which may contain bad contents or sensitive information, the filtered vocabulary is compared with the cleaned sentences, if a certain sentence contains the filtered vocabulary, the filtered vocabulary is calibrated as the sensitive sentence, for the sensitive sentence, the filtered sentence is usually screened out from the cleaned sentence to avoid interference or adverse effect on subsequent processing, the cleaned sentence does not contain the filtered vocabulary, the cleaned sentence can be calibrated as normal sentence and is summarized into a reference data set, the reference data set is a data set obtained after preprocessing and used for further analysis, the filtered sentence contains a large amount of normal sentence, the filtered sentence can be used for providing reliable task and training for subsequent sentence, and the task can be provided in the preprocessing, and the task is required to be set up in the context or the context is not to be properly adjusted or the context is required to be specially processed.
In a preferred embodiment, after the reference data set is determined, all inquiry sentences in the reference data set are acquired, and the inquiry sentences are marked as reference sentences;
acquiring all answer sentences under the same reference sentence, calibrating the answer sentences as sentences to be evaluated, inputting all the sentences to be evaluated into an evaluation model to obtain the occupation ratio of each sentence to be evaluated, and calibrating the occupation ratio as parameters to be checked;
and arranging parameters to be checked according to the sequence from big to small, and inputting the parameters to be checked into a check model to obtain a standard answer sentence corresponding to the reference sentence.
In this embodiment, after determining the reference data set, all the query sentences need to be extracted from the data set first and marked as reference sentences, next, all the answer sentences corresponding to each reference sentence need to be found and marked as sentences to be evaluated, once all the sentences to be evaluated are obtained, they can be input into the evaluation model, the occupation ratio of each sentence to be evaluated is calculated, these occupation ratios are marked as parameters to be checked, finally, the parameters to be checked are ordered according to the size of the occupation ratio, and are input into the check model, and the check model generates standard answer sentences corresponding to the reference sentences according to these parameters, these standard answer sentences will be the reference standard of the model expression.
Further, the step of inputting all the sentences to be evaluated into the evaluation model to obtain the occupation ratio of each sentence to be evaluated and calibrating the occupation ratio as the parameters to be checked comprises the following steps:
step1, acquiring all sentences to be evaluated under the same reference sentence;
step2, calling an evaluation function from the evaluation model;
step3, inputting the sentences to be evaluated into an evaluation function to obtain the text similarity between the sentences to be evaluated;
step4, acquiring an evaluation threshold value, comparing the evaluation threshold value with the text similarity, and classifying sentences to be evaluated with the similarity larger than the text similarity into a plurality of groups of sentences with the same type;
step5, measuring and calculating the occupation ratio of each group of sentences of the same type, and calibrating the occupation ratio as a parameter to be checked.
As described in the above steps Step1-Step5, when the evaluation model is executed, firstly, the sentence to be evaluated under the unified reference sentence is collected, and then is input into the evaluation function, where the expression of the evaluation function is:wherein->Representing text similarity between sentences to be evaluated, < +.>Representing the number of words in the sentence to be evaluated, +.>And->All represent feature vectors corresponding to words in the sentence to be evaluated, and after the text similarity is obtained, we need to obtain an evaluation threshold. The evaluation threshold is a key parameter for comparing the similarity of sentences to be evaluated, and when the text similarity of the sentences to be evaluated exceeds the threshold, the sentences are classified into a plurality of groups of sentences of the same type, which ensures that people can accurately identify the similar sentence groups, so that the occupation ratio can be calculated more accurately.
Further, the step of arranging the parameters to be verified in the order from large to small and inputting the parameters to be verified into the verification model to obtain the standard answer sentence corresponding to the reference sentence comprises the following steps:
step6, obtaining parameters to be checked;
step7, calling a checking function from the checking model, inputting the first two parameters to be checked into the checking function one by one, and calibrating the output result as the difference to be checked;
step8, calling a verification threshold value from the verification model, and comparing the verification threshold value with the difference to be verified;
if the to-be-checked difference is larger than the checking threshold value, calibrating the to-be-evaluated sentence corresponding to the first to-be-checked parameter as a reference answer sentence;
if the difference to be checked is smaller than or equal to the check threshold, the dialogue information in the corresponding real scene is continuously collected.
As described in the above steps Step1-Step8, in order to ensure the performance of the machine in natural language processing, we need to check the statement generated by the machine, the checking process includes the steps of obtaining the parameter to be checked, calling the checking function, comparing the checking threshold value, and the like, firstly collecting the obtained parameter to be checked and providing the parameter to be checked to the checking model, then calling the checking function from the checking model, and inputting the parameter to be checked under the first two bit times into the checking function one by one, wherein the function of the checking function is to calculate the difference between the parameters to be checked, and the embodiment outputs the difference as the difference to be checked, wherein the expression of the checking function is:wherein->Representing the difference to be checked, ++>Representing the first parameter to be checked,/->Representing the parameter to be checked under the second level, calling a check threshold from the check model, comparing the check threshold with the difference to be checked, wherein the check threshold is a preset value for judging whether the sentences of the same type corresponding to the first-level parameter to be checked can be directly used as answer sentences, and if the difference to be checked is larger than the check threshold, calibrating the sentence to be evaluated corresponding to the first-level parameter to be checked as a referenceIf the answer sentence is not the same, the answer sentence under the synonymous reference sentence can not be determined in accuracy, and the dialogue information in the corresponding real scene can be continuously collected, and the process is repeated for further verification.
Secondly, inputting all sentences in the inquiry information and the response information into the feature extraction model together to obtain keywords in the dialogue information, wherein the method comprises the following steps:
s203, acquiring all sentences in query information and response information under the same dialogue information, and performing word segmentation processing to obtain a plurality of independent words;
s204, counting the occurrence times of each independent vocabulary to obtain vocabulary word frequency, and counting the total occurrence times of all independent vocabularies to obtain sample frequency;
s205, calling a measuring and calculating function from the feature extraction model;
s206, inputting the vocabulary word frequency and the sample frequency into the measuring and calculating function together, and calibrating the output result as vocabulary weight;
s207, acquiring a feature extraction threshold, comparing the feature extraction threshold with the vocabulary weight, and calibrating all independent vocabularies larger than the feature extraction threshold as keywords.
As described in the above steps S203-S207, when determining the keywords in the query information and the response information, all the sentences in the query information and the response information under the same dialogue information need to be acquired first, then the word segmentation process needs to be performed, each sentence is decomposed into a plurality of independent words for subsequent processing, and then the occurrence number of each independent word needs to be counted to obtain word frequencies of words. Meanwhile, we need to count the total number of occurrences of all independent words to obtain sample frequency, these statistics data can help us to know the distribution situation of words in dialogue information, and then call a measuring function from a feature extraction model, this measuring function can calculate word frequency and sample frequency according to our needs to obtain the weight of each independent word, this weight can reflect the importance degree of this word in dialogue information, wherein the expression of the measuring function is:wherein->Representing vocabulary weight, ++>Representing the total number of occurrences of all independent words,the method comprises the steps of expressing sample frequency, expressing word frequency of words, obtaining a characteristic extraction threshold value, adjusting the threshold value according to actual demands of people to obtain better keyword extraction effect, comparing the characteristic extraction threshold value with word weight, and calibrating all independent words larger than the characteristic extraction threshold value as keywords.
Example 3:
referring to fig. 3, a third embodiment of the present invention is shown, which is based on the first two embodiments.
Generating a corresponding reasoning rule according to the entity relation, wherein the step comprises the following steps:
s301, extracting a named entity from dialogue information of a real scene, and taking the named entity as a knowledge node in a knowledge graph;
s302, acquiring semantic relevance among keywords and corresponding entity relations;
s303, determining the subordinate relations among the keywords according to the entity relations, and generating corresponding reasoning rules.
As described in the above steps S301-S303, we need to accurately extract the named entity from the dialogue information of the real scene. These named entities may serve as knowledge nodes in a knowledge graph, and provide a basis for the generation of subsequent inference rules, for example, in a session about a movie, named entities such as movie names, actor names, etc. may be extracted, after the named entities are extracted, semantic relevance between these entities and their corresponding entity relationships need to be further analyzed, for example, if two entities such as "director" and "actor" appear in a session of a movie, the relationship between them may be defined as "director" guiding the performance of "actor" so as to form corresponding entity relationships, and after determining the entity relationships between keywords, the subordinate relationships between keywords need to be determined according to these relationships, for example, if "director" guides the performance of "actor", then "director" is subordinate to the relationship of "actor", in this way, corresponding inference rules such as "director guiding actor" may be generated, these thrust rules may help the machine to better understand the semantic relevance and entity relationships in the session, thereby providing powerful tasks for the generation of subsequent intelligent questions, conversations, etc.
Example 4:
referring to fig. 4, a fourth embodiment of the present invention is shown, which is based on the first three embodiments.
Summarizing user feedback information, inputting the user feedback information into an evaluation model, and obtaining dialogue states of all intelligent dialogues, wherein the step comprises the following steps:
s501, acquiring user feedback information, wherein the user feedback information comprises correct feedback and error feedback;
s502, calculating the duty ratio of error feedback in feedback information of all users, and calibrating the duty ratio as a parameter to be evaluated;
s503, calling an evaluation threshold value from the evaluation model, and comparing the evaluation threshold value with parameters to be evaluated;
if the parameter to be evaluated is greater than or equal to the evaluation threshold, indicating that the answer sentence output by the robot does not meet the requirement of the user, and summarizing the corresponding inquiry sentence into a questionnaire text;
if the parameter to be evaluated is smaller than the evaluation threshold, the corresponding dialogue state is directly calibrated into an accurate state.
As described in the above steps S501-S503, the feedback information of the user is obtained through various channels, which includes that they calculate the ratio of the error feedback in the feedback information of all users according to the correct feedback and error feedback given by the answer sentence of the machine during the intelligent dialogue, and mark the ratio as the parameter to be evaluated, this step is to better understand the dissatisfaction degree of the user on the intelligent dialogue, then call the evaluation threshold from the evaluation model, and compare the evaluation threshold with the parameter to be evaluated, if the parameter to be evaluated is greater than or equal to the evaluation threshold, this means that the answer sentence output by the robot does not meet the user 'S requirement, in this case, the corresponding answer sentence is summarized as the questionnaire text, then the questionnaire survey is performed according to the questionnaire text, and the answer sentence corresponding to the questionnaire sentence is obtained, if the parameter to be evaluated is smaller than the evaluation threshold, this indicates that the answer sentence output by the robot is in accordance with the user' S requirement, and then the corresponding dialogue state is marked as the accurate state, and the intelligent dialogue performance is continuously optimized through these steps, and more intelligent dialogue is provided for the user.
Example 5:
as shown in fig. 5, a fifth embodiment of the present invention is based on the first four embodiments, and further provides an intelligent dialogue device based on RPA and AI combination, which is applied to the intelligent dialogue method based on RPA and AI combination, and includes:
the data acquisition module is used for acquiring dialogue information in the real scene, wherein the dialogue information comprises inquiry information and response information;
the feature extraction module is used for preprocessing the collected dialogue information, and inputting all sentences in the inquiry information and the response information into the feature extraction model together to obtain keywords in the dialogue information;
the knowledge construction module is used for constructing a knowledge graph by utilizing RPA and AI technologies according to the preprocessed dialogue information, determining entity relations in the knowledge graph according to the keywords, generating corresponding reasoning rules according to the entity relations, and constructing a response database and an extension database of the robot according to the knowledge graph and the reasoning rules;
the intelligent dialogue module is used for acquiring inquiry sentences of the user, outputting response sentences according to the knowledge graph and the reasoning rules, realizing intelligent dialogue between the robot and the user, and collecting user feedback information after the dialogue is finished;
and the feedback module is used for summarizing user feedback information, inputting the user feedback information into the evaluation model to obtain dialogue states of all intelligent dialogues, wherein the dialogue states comprise an accurate state and an error state, summarizing query sentences in the error state into questionnaires, and executing questionnaires according to the questionnaires to obtain answer sentences corresponding to the query sentences.
When the intelligent dialogue device is executed, dialogue information is firstly collected from a real scene, the information comprises inquiry information and response information, then the collected dialogue information is preprocessed to ensure the quality and accuracy of data, the preprocessed sentences are input into a feature extraction model together, the model can identify keywords in the dialogue information, key information is provided for subsequent knowledge graph construction, a huge knowledge graph is constructed by utilizing RPA and AI technology, the knowledge graph covers various entity relations, the relations are determined according to the keywords, through the entity relations, a corresponding inference rule can be generated, an answer database and an extension database of a robot are constructed, when a user initiates an inquiry, the robot can rapidly acquire inquiry sentences of the user, based on the knowledge graph and the inference rule, the robot can search the most suitable answer sentences from the answer database and output the answer sentences to the user, in this way, the robot can conduct intelligent dialogue with the user, provide accurate and timely answers, after the dialogue is finished, feedback information of the user can be collected, the feedback information can collect the answer sentences for improving the performance of the robot and improving the quality of the dialogue sentences, can be used for evaluating the questionnaire-sentence, and can collect the answer sentences and can be used for the state-questionnaire, and can be used for evaluating the state-questionnaire, and can be carried out by the state-questionnaire, the state is not to be corresponding to the state-questionnaire, the state is collected, the answer sentence can be accurately evaluated, the answer is collected, and the state is not be can be used for the state-questionnaire is required by the state is collected, and the state is can is required to be is required for the questionled, the intelligent level and the service quality of the robot are improved.
Example 6:
as shown in fig. 6, this embodiment is based on the first five embodiments, and provides an electronic device, including an intelligent dialogue device based on RPA and AI combination as described above.
It should be noted that, in this document, the terms "comprises," "comprising," or any other variation thereof, are intended to cover a non-exclusive inclusion, such that a process, apparatus, article, or method that comprises a list of elements does not include only those elements but may include other elements not expressly listed or inherent to such process, apparatus, article, or method. Without further limitation, an element defined by the phrase "comprising one … …" does not exclude the presence of other like elements in a process, apparatus, article or method that comprises the element.
The foregoing is merely a preferred embodiment of the present invention and it should be noted that modifications and adaptations to those skilled in the art may be made without departing from the principles of the present invention, which are intended to be comprehended within the scope of the present invention. Structures, devices and methods of operation not specifically described and illustrated herein, unless otherwise indicated and limited, are implemented according to conventional means in the art.
Claims (6)
1. An intelligent dialogue method based on combination of RPA and AI is characterized in that: comprising the following steps:
collecting dialogue information in a real scene, wherein the dialogue information comprises inquiry information and response information;
preprocessing the collected dialogue information, and inputting all sentences in the inquiry information and the response information into a feature extraction model together to obtain keywords in the dialogue information;
constructing a knowledge graph by utilizing RPA and AI technologies according to the preprocessed dialogue information, determining entity relations in the knowledge graph according to key words, generating corresponding reasoning rules according to the entity relations, and constructing a response database and an extension database of the robot according to the knowledge graph and the reasoning rules;
acquiring inquiry sentences of a user, outputting response sentences according to the knowledge graph and the reasoning rules, realizing intelligent dialogue between the robot and the user, and collecting user feedback information after the dialogue is finished;
summarizing the user feedback information, inputting the user feedback information into an evaluation model to obtain dialogue states of each intelligent dialogue, wherein the dialogue states comprise an accurate state and an error state, summarizing query sentences in the error state into questionnaires, and executing questionnaires according to the questionnaires to obtain answer sentences corresponding to the query sentences;
the step of preprocessing the collected dialogue information comprises the following steps:
acquiring dialogue information, performing data cleaning, and removing special characters, HTML labels and URLs to obtain cleaned sentences;
obtaining a filtered vocabulary, and comparing the filtered vocabulary with the cleaned sentences, wherein the filtered vocabulary is a sensitive vocabulary;
if the filtered words exist in the cleaned sentences, marking the cleaned sentences as sensitive sentences, and screening out the cleaned sentences;
if the filtered vocabulary does not exist in the cleaned sentences, calibrating the cleaned sentences as normal sentences, and summarizing the normal sentences into a reference data set;
after the reference data set is determined, all inquiry sentences in the reference data set are acquired, and the inquiry sentences are calibrated into reference sentences;
acquiring all answer sentences under the same reference sentence, calibrating the answer sentences as sentences to be evaluated, inputting all the sentences to be evaluated into an evaluation model to obtain the occupation ratio of each sentence to be evaluated, and calibrating the occupation ratio as parameters to be checked;
arranging the parameters to be checked according to the sequence from big to small, and inputting the parameters to be checked into a check model to obtain a standard answer sentence corresponding to the reference sentence;
the step of inputting all the sentences to be evaluated into an evaluation model to obtain the occupation ratio of each sentence to be evaluated and calibrating the occupation ratio as parameters to be checked comprises the following steps:
acquiring all sentences to be evaluated under the same reference sentence;
invoking an evaluation function from the evaluation model;
inputting the sentences to be evaluated into an evaluation function to obtain text similarity among the sentences to be evaluated;
acquiring an evaluation threshold value, comparing the evaluation threshold value with the text similarity, and classifying sentences to be evaluated, which are larger than the text similarity, into a plurality of groups of sentences with the same type;
the occupation ratio of each group of the sentences of the same type is calculated and calibrated as parameters to be checked;
the step of arranging the parameters to be checked according to the sequence from big to small and inputting the parameters to be checked into a check model to obtain a standard answer sentence corresponding to the reference sentence comprises the following steps:
acquiring the parameter to be checked;
calling a checking function from the checking model, inputting the first two parameters to be checked into the checking function one by one, and calibrating the output result as the difference to be checked;
calling a verification threshold value from the verification model, and comparing the verification threshold value with the difference to be verified;
if the to-be-checked difference is larger than a checking threshold value, calibrating the to-be-evaluated sentence corresponding to the first to-be-checked parameter as a reference answer sentence;
and if the to-be-checked difference is smaller than or equal to the checking threshold value, continuously collecting dialogue information in the corresponding real scene.
2. The intelligent dialogue method based on combination of RPA and AI according to claim 1, wherein: the step of inputting all sentences in the inquiry information and the response information into the feature extraction model together to obtain keywords in the dialogue information comprises the following steps:
acquiring all sentences in the inquiry information and the response information under the same dialogue information, and performing word segmentation processing to obtain a plurality of independent words;
counting the occurrence times of each independent word to obtain word frequency of the word, and counting the total occurrence times of all the independent words to obtain sample frequency;
invoking a measuring and calculating function from the feature extraction model;
the vocabulary word frequency and the sample frequency are input into an measuring and calculating function together, and the output result is calibrated as vocabulary weight;
and acquiring a feature extraction threshold value, comparing the feature extraction threshold value with the vocabulary weight, and calibrating all independent vocabularies larger than the feature extraction threshold value as keywords.
3. The intelligent dialogue method based on combination of RPA and AI according to claim 1, wherein: the step of generating the corresponding reasoning rule according to the entity relation comprises the following steps:
extracting a named entity from dialogue information of the real scene, and taking the named entity as a knowledge node in a knowledge graph;
acquiring semantic relevance among the keywords and corresponding entity relations;
and determining the subordinate relations among the keywords according to the entity relations, and generating corresponding reasoning rules.
4. The intelligent dialogue method based on combination of RPA and AI according to claim 1, wherein: the step of summarizing the user feedback information and inputting the summarized user feedback information into an evaluation model to obtain the dialogue state of each intelligent dialogue comprises the following steps:
acquiring the user feedback information, wherein the user feedback information comprises correct feedback and error feedback;
the duty ratio of the error feedback in the feedback information of all users is calculated and calibrated as the parameter to be evaluated;
invoking an evaluation threshold value from the evaluation model, and comparing the evaluation threshold value with parameters to be evaluated;
if the parameter to be evaluated is greater than or equal to the evaluation threshold, indicating that the answer sentence output by the robot does not meet the requirement of the user, and summarizing the corresponding inquiry sentence into a questionnaire text;
if the parameter to be evaluated is smaller than the evaluation threshold, the corresponding dialogue state is directly calibrated into an accurate state.
5. An intelligent dialogue device based on combination of RPA and AI, which is applied to the intelligent dialogue method based on combination of RPA and AI as claimed in any one of claims 1 to 4, and is characterized in that: comprising the following steps:
the data acquisition module is used for acquiring dialogue information in a real scene, wherein the dialogue information comprises inquiry information and response information;
the feature extraction module is used for preprocessing the collected dialogue information, and inputting all sentences in the inquiry information and the response information into a feature extraction model together to obtain keywords in the dialogue information;
the knowledge construction module is used for constructing a knowledge graph by utilizing RPA and AI technologies according to the preprocessed dialogue information, determining entity relations in the knowledge graph according to the keywords, generating corresponding reasoning rules according to the entity relations, and constructing a response database and an extension database of the robot according to the knowledge graph and the reasoning rules;
the intelligent dialogue module is used for acquiring inquiry sentences of a user, outputting response sentences according to the knowledge graph and the reasoning rules, realizing intelligent dialogue between the robot and the user, and collecting user feedback information after the dialogue is finished;
and the feedback module is used for summarizing the user feedback information, inputting the user feedback information into an evaluation model to obtain dialogue states of the intelligent dialogues, wherein the dialogue states comprise an accurate state and an error state, summarizing inquiry sentences in the error state into questionnaires, and executing questionnaires according to the questionnaires to obtain answer sentences corresponding to the inquiry sentences.
6. An electronic device, characterized in that: an intelligent dialogue device based on combination of RPA and AI as claimed in claim 5.
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